SRNeRV: A Scale-wise Recursive Framework for Neural Video Representation
SRNeRV is a novel, parameter-efficient neural video representation framework that leverages scale self-similarity through a hybrid recursive sharing scheme to significantly reduce model size while achieving superior rate-distortion performance compared to traditional stacked multi-scale architectures.